Rapid and high accuracy identification of culture medium by CNN of Raman spectra.

Yu Wan, Yue Jiang, Weiheng Zheng, Xinxin Li, Yuanchen Sun, Zongnan Yang, Chuang Qi, Xiangwei Zhao
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Abstract

Culture media are widely used for biological research and production. It is essential for the growth of microorganisms, cells, or tissues. It includes complex components like carbohydrates, proteins, vitamins, and minerals. The media's consistency is key for predictable outcomes in biology applications. However, traditional methods of analyzing media are costly and time-consuming by using chromatography or mass spectrometry. This study introduces an innovative approach using optimized convolutional neural networks (CNN) combined with Raman spectroscopy to identify culture media. Samples of culture media from different models and batches are prepared for identification experiment. Raman spectra of each culture media samples are captured with unique molecular vibrations and rotations by Raman spectrometer rapidly. After preprocessing of sample data, Raman spectra are input to CNN for identification training and validation. An optimized CNN with more layers is designed to enhance the identify ability for Raman spectra. In experiment, it compared the performance of PCA-SVM, the original CNN, and an optimized CNN for media identification. The PCA-SVM achieved high accuracy and precision rates of 99.19% and 98.39% respectively. The original CNN achieved an accuracy of 71.89% due to limited training dataset. The optimized CNN model achieved a perfect accuracy rate of 100% in identifying different culture media. To avoid overfitting risk, additional external test is performed with optimized CNN. The result confirmed that optimized CNN offering effectiveness in identifying media from different models and batches, with strong generalization ability. The findings in study may offer an efficient and cost-effective method for pharmaceutical companies, to ensure the consistency of culture media.

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通过拉曼光谱 CNN 对培养基进行快速、高精度的鉴定。
培养基广泛用于生物研究和生产。它是微生物、细胞或组织生长所必需的。它包括碳水化合物、蛋白质、维生素和矿物质等复杂成分。媒介的一致性是生物学应用中可预测结果的关键。然而,传统的介质分析方法是使用色谱法或质谱法,既昂贵又耗时。本研究介绍了一种利用优化卷积神经网络(CNN)结合拉曼光谱识别培养基的创新方法。准备不同型号、不同批次的培养基样品进行鉴定实验。利用独特的分子振动和旋转,拉曼光谱仪可以快速捕获每种培养基样品的拉曼光谱。对样本数据进行预处理后,将拉曼光谱输入CNN进行识别训练和验证。为了提高对拉曼光谱的识别能力,设计了一种多层优化的CNN。在实验中,比较了PCA-SVM、原始CNN和优化后的CNN在媒体识别中的性能。PCA-SVM的正确率和精密度分别达到99.19%和98.39%。由于训练数据有限,原始CNN的准确率为71.89%。优化后的CNN模型对不同培养基的识别准确率达到100%。为避免过拟合风险,对优化后的CNN进行额外的外部测试。结果证实,优化后的CNN在识别不同模型和批次的介质上是有效的,具有较强的泛化能力。研究结果可为制药企业保证培养基的一致性提供一种高效、经济的方法。
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